We use cookies to understand how you use our site and to improve your experience. This includes personalizing content and advertising. To learn more, click here. By continuing to use our site, you accept our use of cookies. Cookie Policy.

MedImaging

Download Mobile App
Recent News Radiography MRI Ultrasound Nuclear Medicine General/Advanced Imaging Imaging IT Industry News

New AI Tool Could Radically Improve Diagnosis and Treatment of Breast Cancer

By MedImaging International staff writers
Posted on 27 Dec 2019
Researchers at the University of Auckland (Auckland, New Zealand) are combining machine learning and state-of-the-art imaging to develop an automated analysis technique that will radically improve the diagnosis and treatment of breast cancer. The researchers received USD 1.05 million in philanthropic funding to advance research in which they have developed biomechanical analysis techniques that automatically merges information from different medical images of the breast. This will provide clinicians with more information about any abnormality, as suspicious lesions and warning signs for cancer can appear differently in the various types of images.

For instance, it can help to co-locate abnormalities such as micro-calcifications – tiny and difficult-to-detect features visible on X-ray mammograms that can indicate early stages of breast cancer – with regions of increased blood supply identified using MRI and which can also indicate tumor growth. Part of the challenge has been identifying the different biomechanical properties of the different types of breast tissues — to account for the individuality of each patient. The team was able to draw on 200 scans provided (with patient permission) by the Auckland District Health Board. The researchers have made enormous progress in developing methods for analysis and mathematical modelling of breast tissue.

Illustration
Illustration

“This work is approaching real-time clinical application, which is very exciting in terms of realizing the benefits of advanced computational techniques in improving outcomes for patients,” said Dr. Anthony Doyle, an MRI expert at Auckland City Hospital, who has worked with the team on identifying key clinical challenges that need solving and providing feedback on their research.

Related Links:
University of Auckland


New
Gold Member
X-Ray QA Meter
T3 AD Pro
Portable Color Doppler Ultrasound Scanner
DCU10
New
DRF DR & Remote Fluoroscopy Solution
CombiDiagnost R90
Silver Member
Radiographic Positioning Equipment
2-Step Multiview Positioning Platform

Latest Industry News News

Bracco Diagnostics and ColoWatch Partner to Expand Availability CRC Screening Tests Using Virtual Colonoscopy

Mindray Partners with TeleRay to Streamline Ultrasound Delivery

Philips and Medtronic Partner on Stroke Care